Subspace selection is a powerful tool in data mining. An important subspace method is the Fisher - Rao linear discriminant analysis (LDA), which has been successfully applied in many fields such as biometrics, bioinformatics, and multimedia retrieval. However, LDA has a critical drawback: the projection to a subspace tends to merge those classes that are close together in the original feature space. If the separated classes are sampled from Gaussian distributions, all with identical covariance matrices, then LDA maximizes the mean value of the Kullback - Leibler (KL) divergences between the different classes. We generalize this point of view to obtain a framework for choosing a subspace by 1) generalizing the KL divergence to the Bregman di...
Friedman (1989) has proposed a regularization technique (RDA) of discriminant anal-ysis in the Gauss...
The regularization principals [31] lead approximation schemes to deal with various learning problems...
This paper reveals the discriminant ability of the orthogonal projection of data onto a generalized ...
Subspace selection approaches are powerful tools in pattern classification and data visualization. O...
Fisher--Rao Linear Discriminant Analysis (LDA), a valuable tool for multigroup classification and da...
Generalized discriminant analysis (GDA) is a commonly used method for dimensionality reduction. In i...
This work reviews and extends a family of log-determinant (log-det) divergences for symmetric positi...
Fisher’s discriminant analysis Fukunaga–Koontz transformation Kullback–Leibler divergence a b s t r ...
Approximating a divergence between two probability distributions from their sam-ples is a fundamenta...
The regularization principals [31] lead approximation schemes to deal with various learning problems...
In decision making systems involving multiple classifiers there is the need to assess classifier (in...
We concentrate our research activities on the multivariate feature selection, which is one important...
In machine learning, linear discriminant analysis (LDA) is a popular dimension reduction method. In ...
We discuss the use of divergences in dissimilarity-based classification. Divergences can be employed...
Mwebaze E, Schneider P, Schleif F-M, et al. Divergence based classification in Learning Vector Quant...
Friedman (1989) has proposed a regularization technique (RDA) of discriminant anal-ysis in the Gauss...
The regularization principals [31] lead approximation schemes to deal with various learning problems...
This paper reveals the discriminant ability of the orthogonal projection of data onto a generalized ...
Subspace selection approaches are powerful tools in pattern classification and data visualization. O...
Fisher--Rao Linear Discriminant Analysis (LDA), a valuable tool for multigroup classification and da...
Generalized discriminant analysis (GDA) is a commonly used method for dimensionality reduction. In i...
This work reviews and extends a family of log-determinant (log-det) divergences for symmetric positi...
Fisher’s discriminant analysis Fukunaga–Koontz transformation Kullback–Leibler divergence a b s t r ...
Approximating a divergence between two probability distributions from their sam-ples is a fundamenta...
The regularization principals [31] lead approximation schemes to deal with various learning problems...
In decision making systems involving multiple classifiers there is the need to assess classifier (in...
We concentrate our research activities on the multivariate feature selection, which is one important...
In machine learning, linear discriminant analysis (LDA) is a popular dimension reduction method. In ...
We discuss the use of divergences in dissimilarity-based classification. Divergences can be employed...
Mwebaze E, Schneider P, Schleif F-M, et al. Divergence based classification in Learning Vector Quant...
Friedman (1989) has proposed a regularization technique (RDA) of discriminant anal-ysis in the Gauss...
The regularization principals [31] lead approximation schemes to deal with various learning problems...
This paper reveals the discriminant ability of the orthogonal projection of data onto a generalized ...